Remote Sensing (Oct 2015)

Mapping Cropping Practices of a Sugarcane-Based Cropping System in Kenya Using Remote Sensing

  • Betty Mulianga,
  • Agnès Bégué,
  • Pascal Clouvel,
  • Pierre Todoroff

DOI
https://doi.org/10.3390/rs71114428
Journal volume & issue
Vol. 7, no. 11
pp. 14428 – 14444

Abstract

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Over the recent past, there has been a growing concern on the need for mapping cropping practices in order to improve decision-making in the agricultural sector. We developed an original method for mapping cropping practices: crop type and harvest mode, in a sugarcane landscape of western Kenya using remote sensing data. At local scale, a temporal series of 15-m resolution Landsat 8 images was obtained for Kibos sugar management zone over 20 dates (April 2013 to March 2014) to characterize cropping practices. To map the crop type and harvest mode we used ground survey and factory data over 1280 fields, digitized field boundaries, and spectral indices (the Normalized Difference Vegetation Index (NDVI) and the Normalized Difference Water Index (NDWI)) were computed for all Landsat images. The results showed NDVI classified crop type at 83.3% accuracy, while NDWI classified harvest mode at 90% accuracy. The crop map will inform better planning decisions for the sugar industry operations, while the harvest mode map will be used to plan for sensitizations forums on best management and environmental practices.

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